利用工艺参数实时预测纸张的强度特性

Shivamurthy Modgi, K. Rajan
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摘要

目前还没有在线纸张强度测试方法,造纸商必须等待完整卷筒的制造才能评估质量。目前的方法是测试卷轴的一个非常小的数据样本(少于0.005%),以确认论文符合规格。本文试图在运行中的纸机上预测纸张的性能,以便造纸商在改变各种工艺参数时可以实时看到预测的测试值。本研究采用多元分析方法在芝加哥的一家回收纸板厂进行。使用Braincube提供的程序识别影响强度特性的所有参数。使用回归模型分析了近1600个参数,以确定有助于预测板材强度特性的主要参数。回归模型的系数与实时数据一起用于预测板的强度特性。将预测结果与试验结果进行比较显示出良好的相关性(在某些情况下为95%)。所确定的工艺参数与造纸工艺吻合较好,从而验证了模型的正确性。如果采用这种方法,未来有可能作为下一步预测各种弹性模量(E11、E12、E22等),而不是纸箱行业使用的传统的单数字“强度”试验,如环压试验(RCT)、瓦楞介质试验(CMT)、短跨抗压强度试验。
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Predicting strength characteristics of paper in real time using process parameters
Online paper strength testing methods are currently unavailable, and papermakers have to wait for manufacture of a complete reel to assess quality. The current methodology is to test a very small sample of data (less than 0.005%) of the reel to confirm that the paper meets the specifications. This paper attempts to predict paper properties on a running paper machine so that papermakers can see the test values predicted in real time while changing various process parameters. This study was conducted at a recycled containerboard mill in Chicago using the multivariate analysis method. The program provided by Braincube was used to identify all parameters that affect strength characteristics. Nearly 1600 parameters were analyzed using a regression model to identify the major parameters that can help to predict sheet strength characteristics. The coefficients from the regression model were used with real-time data to predict sheet strength characteristics. Comparing the prediction with test results showed good correlation (95% in some cases). The process parameters identified related well to the papermaking process, thereby validating the model. If this method is used, it may be possible to predict various elastic moduli (E11, E12, E22, etc.) in the future as the next step, rather than the traditional single number “strength” tests used in the containerboard industry, such as ring crush test (RCT), corrugating medium test (CMT), and short-span compression strength test.
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